Credit Card Fraud Prediction Using XGBoost

Author:

Mohbey Krishna Kumar1ORCID,Khan Mohammad Zubair2ORCID,Indian Ajay1

Affiliation:

1. Central University of Rajasthan, India

2. Taibah University, Saudi Arabia

Abstract

With the development of technology, the internet and eCommerce online payment has become an essential mode of payment. Nowadays, credit card payment is a convenient mode of payment online as well as offline transactions. As online credit card payment increases, fraud transactions are likewise increasing day by day. Increasing fraud transactions in the online payment system became a more significant challenge for banks, companies, and researchers. Therefore, it is essential to have an efficient methodology to detect fraud transactions while payment has completed via credit card. Although many traditional approaches are already available for fraud transaction prediction, however, existing methods lack accuracy, and it can be increased by ensemble techniques such as XGBoost. In this paper, we use an ensemble approach that is XGBoost (eXtreme Gradient Boosting) for credit card fraud prediction. The results are compared with existing machine learning approaches.

Publisher

IGI Global

Subject

General Medicine

Reference38 articles.

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